2

Remote Full Stack Machine Learning Engineer Jobs in Memphis, TN

AI Developer

Memphis, TN ยท On-site +1

Must have strong software engineering fundamentals and a deep understanding of working with LLMs in production environments. The ideal candidate brings hands-on experience with Python and modern data ...

... programming and SQL knowledge. * Demonstrated experience building and deploying statistical and machine learning models to address business challenges. * Skilled in data wrangling, quality evaluation ...

Junior AI Developer

Memphis, TN ยท On-site +1

$60K - $78K/yr

Training and Experience: 0-2 years of professional experience in software development, data engineering, machine learning, or backend development. General Skills: Must have strong software ...

Linear Algebra Tutor

Memphis, TN ยท Remote

$18 - $40/hr

... data science, engineering, and advanced mathematics. * Conceptual Teaching & Problem-Solving ... machine learning, and quantum mechanics applications. * Curriculum Awareness & Adaptive Instruction:

Mechanical Engineering Tutor

Memphis, TN ยท Remote

$18 - $40/hr

About the Job The Varsity Tutors Live Learning Platform has thousands of students looking for ... transfer, machine design, manufacturing processes, and control systems. Ability to explain free ...

While this is a full remote position, there is preference for candidates located in the Northern California area. Main Accountabilities: * Lead and support engineering design activities for new and ...

While this is a full remote position, there is preference for candidates located in the Northern California area. Main Accountabilities: * Lead and support engineering design activities for new and ...

Solution Design Engineer (Remote)

Memphis, TN ยท On-site +1

$98K - $123K/yr

Join CEVA Logistics, and you will be part of a team that values imagination and continued learning ... Engineering support may include data analysis, concept of operations, design layouts, identifying ...

This is a remote position. #Li-Remote This role is contributing to the Electrification Smart ... We want you to bring your full self to work-your ideas, your energy, your ambition. You'll have the ...

This is a remote position. #Li-Remote This role is contributing to the Electrification Smart ... We want you to bring your full self to work-your ideas, your energy, your ambition. You'll have the ...

next page

Showing results 1-20

Remote Full Stack Machine Learning Engineer information

See Memphis, TN salary details

$43.2K

$130.9K

$185.1K

How much do remote full stack machine learning engineer jobs pay per year?

As of Jul 18, 2026, the average yearly pay for remote full stack machine learning engineer in Memphis, TN is $130,925.00, according to ZipRecruiter salary data. Most workers in this role earn between $107,800.00 and $153,500.00 per year, depending on experience, location, and employer.

What is a Remote Full Stack Machine Learning Engineer?

A Remote Full Stack Machine Learning Engineer is a professional who designs, develops, and deploys machine learning solutions while working remotely. They handle both the front-end and back-end aspects of machine learning projects, including data preprocessing, model building, API development, and integration with user interfaces or cloud platforms. This role requires expertise in programming, machine learning frameworks, cloud services, and web technologies, allowing them to build end-to-end AI-driven applications from anywhere in the world.

What are some common challenges faced by remote Full Stack Machine Learning Engineers, and how can they be addressed?

Remote Full Stack Machine Learning Engineers often encounter challenges such as managing effective collaboration with cross-functional teams and ensuring smooth deployment of machine learning models into production environments. To address these, it's important to establish clear communication channels, regularly participate in virtual stand-ups, and use collaborative platforms such as GitHub and Slack. Additionally, staying organized with version control and thorough documentation helps maintain project transparency and ensures seamless handoffs between backend and frontend development. Proactively seeking feedback and scheduling regular check-ins with team members can further enhance productivity and integration within the team.

What is the difference between Remote Full Stack Machine Learning Engineer vs Remote Data Scientist?

AspectRemote Full Stack Machine Learning EngineerRemote Data Scientist
Primary FocusDeveloping end-to-end machine learning applications, including backend, frontend, and model deploymentAnalyzing data, creating models, and generating insights without necessarily building full applications
Skills RequiredProgramming (Python, JavaScript), ML frameworks, web development, deployment toolsStatistics, data analysis, visualization, Python/R, SQL
Work EnvironmentCollaborates with developers, data engineers, and product teams in tech-driven companiesWorks with data teams, analysts, and business units in various industries

While both roles involve working with data and machine learning, a Remote Full Stack Machine Learning Engineer builds complete applications with integrated ML models, whereas a Remote Data Scientist focuses on data analysis and model creation without necessarily developing full applications.

What are the key skills and qualifications needed to thrive as a Remote Full Stack Machine Learning Engineer, and why are they important?

To thrive as a Remote Full Stack Machine Learning Engineer, you need proficiency in programming languages (such as Python or JavaScript), a solid understanding of machine learning algorithms, experience with web development frameworks, and typically a degree in computer science or a related field. Familiarity with tools like TensorFlow, PyTorch, Docker, cloud computing platforms (AWS, GCP), and version control systems (Git) is essential. Strong problem-solving skills, self-motivation, and clear communication are crucial soft skills, especially in remote and cross-functional team environments. These combined skills ensure effective design, deployment, and integration of machine learning solutions in scalable web applications while maintaining productivity in a remote setting.
What are the most commonly searched types of Full Stack Machine Learning Engineer jobs in Memphis, TN? The most popular types of Full Stack Machine Learning Engineer jobs in Memphis, TN are:
What are popular job titles related to Remote Full Stack Machine Learning Engineer jobs in Memphis, TN? For Remote Full Stack Machine Learning Engineer jobs in Memphis, TN, the most frequently searched job titles are:
What job categories do people searching Remote Full Stack Machine Learning Engineer jobs in Memphis, TN look for? The top searched job categories for Remote Full Stack Machine Learning Engineer jobs in Memphis, TN are:
Infographic showing various Remote Full Stack Machine Learning Engineer job openings in Memphis, TN as of July 2026, with employment types broken down into 93% Full Time, 3% Part Time, 1% Temporary, and 3% Contract. Highlights an 87% Physical, 4% Hybrid, and 9% Remote job distribution, with an average salary of $130,925 per year, or $62.9 per hour.
AI Developer

AI Developer

CTI

Memphis, TN โ€ข On-site, Remote

Full-time

Re-posted 13 days ago


Job description

PURPOSE OF POSITION Responsible for model integration, data pipelines, retrieval infrastructure, and the engineering scaffolding required to ship reliable, secure, and cost-effective Artificial Intelligence (AI) features. This role ensures the delivery of production-grade Large Language Model (LLM) systems that meet real-world demands for performance, cost-efficiency, and governance. MINIMUM QUALIFICATIONS Education: Master's degree preferred.

Bachelor's in Computer Science, Data Science, AI, or related field with equivalent experience considered, or related field or equivalent practical experience. Training and Experience: 3-7 years in backend development, AI systems, or related roles, with a focus on LLMs integration or retrieval systems. General Skills: Must have strong software engineering fundamentals and a deep understanding of working with LLMs in production environments.

The ideal candidate brings hands-on experience with Python and modern data tooling and is comfortable building robust pipelines that connect unstructured content, structured data, and retrieval systems to power context-aware LLM workflows. You should demonstrate fluency in the design and reasoning of data movement processes, including ingestion, preprocessing, vector indexing, and query generation. Experience working with both open-weight and API-based large language models is also essential.

This role requires a practical mindset, a strong command of SQL and retrieval strategies over relational data, and the ability to experiment, evaluate, and iterate toward scalable, cost-effective, and trustworthy AI features. Required Skills: Mastery in Python, including experience with modern practices in structuring, testing, and maintaining codebases. Orchestrated Retrieval-Augmented Generation (RAG) systems, including document chunking, embedding, vector search, and grounded context construction.

Expertise with PostgreSQL and pgvector, including schema design and structured retrieval over relational data. Robust operational understanding with SQL query generation, particularly in the context of semantic or hybrid retrieval. Comprehensive background integrating and orchestrating LLMs, with a focus on prompt templating, tool usage, and response parsing.

Familiarity with Google ADK or equivalent frameworks for LLM scaffolding and orchestration. Proficient in utilizing unstructured and structured data, including ingestion from PDFs, DOCX, Markdown, HTML, and APIs. Experience deploying and debugging LLM systems, including containerization (Docker), API-based LLM integration (e.g., Ollama or vLLM), and environment configuration

Preferred Skills Background with graph-enhanced retrieval, using tools like Neo4j or ArangoDB, and an understanding of when and how to apply knowledge graphs to improve LLM grounding. Versed in model adaptation techniques, including LoRA, QLoRA, or PEFT approaches for fine-tuning or personalization. Expert in designing and implementing advanced prompt optimization frameworks, including developing automated evaluation systems and troubleshooting complex failure modes to enhance AI model performance and reliability.

Proven ability to design end-to-end hybrid search and reranking pipelines, such as ColBERT, BGE rerankers, or commercial tools like Cohere Rerank. Expertise with infrastructure optimizations, such as autoscaling (KEDA, HPA), Redis caching layers, or efficient streaming and batching. Demonstrated skill in safe deployment practices, including prompt injection mitigation and handling of sensitive or regulated data.

Clearance: Must be able to obtain/maintain a Secret clearance. Prefer holds an active Secret clearance. DUTIES & RESPONSIBILITIES Design and implement end-to-end RAG architectures, including document ingestion, chunking, embedding generation, vector indexing, query planning, retrieval, and response synthesis.

Evaluate and integrate LLMs, embedding models, and vector databases to support efficient and accurate retrieval and generation. Design and implement scaffolding and orchestration around LLMs, including prompt templating, tool invocation, evaluation harnesses, and safety guards. Develop data processing pipelines for structured and unstructured content (PDF, DOCX, HTML, Markdown, databases, APIs); implement normalization, deduplication, PII redaction, and metadata enrichment.

Implement and optimize retrieval strategies and context construction (citation, source attribution, grounding). Adapt retrieval and embedding strategies to domain-specific taxonomies, ontologies, or structured schemas; support contextual retrieval from hierarchical or relational sources. Productionize LLM-based systems: containerize components (Docker), deploy orchestration via Kubernetes or serverless platforms, implement observability (OpenTelemetry, logging, tracing), and manage configuration.

Measure and improve quality: define offline and online evals, golden datasets, A/B tests, hallucination detection, toxicity filters, and guardrails. Optimize performance and cost: batching, caching, streaming, and efficient context management. Implement security, privacy, and compliance best practices including access controls, injection defense, and safe data handling.

Develop solutions that can run entirely on-premise or in air-gapped environments, prioritizing data sovereignty and privacy. Various other duties in direct support of accomplishment of primary duties listed. SUPERVISORY/MANAGEMENT RESPONSIBILITY None.